Machine learning in solid heterogeneous catalysis: Recent developments, challenges and perspectives

被引:90
作者
Guan, Yani [1 ]
Chaffart, Donovan [2 ]
Liu, Guihua [1 ]
Tan, Zhaoyang [1 ]
Zhang, Dongsheng [1 ]
Wang, Yanji [1 ]
Li, Jingde [1 ]
Ricardez-Sandoval, Luis [2 ]
机构
[1] Hebei Univ Technol, Sch Chem Engn & Technol, Hebei Prov Key Lab Green Chem Technol & High Effi, Tianjin Key Lab Chem Proc Safety, Tianjin 300130, Peoples R China
[2] Univ Waterloo, Dept Chem Engn, Waterloo, ON N2L 3G1, Canada
基金
中国国家自然科学基金;
关键词
Machine learning; Heterogeneous catalysis; Catalyst database; Catalysis descriptors; DENSITY-FUNCTIONAL THEORY; ARTIFICIAL NEURAL-NETWORKS; OXYGEN EVOLUTION REACTION; SYSTEMS SUBJECT; OPTIMIZATION; DESIGN; REDUCTION; CHEMISTRY; MODELS; PHASE;
D O I
10.1016/j.ces.2021.117224
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Recently, the availability of extensive catalysis-related data generated by experimental data and theoret-ical calculations has promoted the development of machine learning (ML) techniques for novel heteroge-neous catalyst development. ML is an effective tool in automating the generation, processing, and interpretation of large catalyst datasets with superior properties than the conventional statistical approaches. Also, ML have enabled the identification of accurate data-driven models that have been used to establish key relationships between the features of materials and targeted catalytic performance, such as activity, selectivity, and stability. These advances have resulted in the development of efficient design or screening guidelines for solid-state catalysts with targeted properties. However, extending the existing ML approaches to obtain accurate predictions of catalyst performance or design strategies for high -performance catalysts still poses several challenges. In this review, we discuss the recent milestones on the application of ML for solid heterogeneous catalysis and present the limitations and challenges of ML in this field. We also discuss potential future directions for the effective use of ML in solid hetero-geneous catalyst design. (c) 2021 Elsevier Ltd. All rights reserved.
引用
收藏
页数:20
相关论文
共 127 条
[1]   Scaling properties of adsorption energies for hydrogen-containing molecules on transition-metal surfaces [J].
Abild-Pedersen, F. ;
Greeley, J. ;
Studt, F. ;
Rossmeisl, J. ;
Munter, T. R. ;
Moses, P. G. ;
Skulason, E. ;
Bligaard, T. ;
Norskov, J. K. .
PHYSICAL REVIEW LETTERS, 2007, 99 (01)
[2]   Adsorption Enthalpies for Catalysis Modeling through Machine-Learned Descriptors [J].
Andersen, Mie ;
Reuter, Karsten .
ACCOUNTS OF CHEMICAL RESEARCH, 2021, 54 (12) :2741-2749
[3]   Predicting the Activity and Selectivity of Bimetallic Metal Catalysts for Ethanol Reforming using Machine Learning [J].
Artrith, Nongnuch ;
Lin, Zhexi ;
Chen, Jingguang G. .
ACS CATALYSIS, 2020, 10 (16) :9438-9444
[4]   Understanding the Composition and Activity of Electrocatalytic Nanoalloys in Aqueous Solvents: A Combination of DFT and Accurate Neural Network Potentials [J].
Artrith, Nongnuch ;
Kolpak, Alexie M. .
NANO LETTERS, 2014, 14 (05) :2670-2676
[5]   Toward a Design of Active Oxygen Evolution Catalysts: Insights from Automated Density Functional Theory Calculations and Machine Learning [J].
Back, Seoin ;
Tran, Kevin ;
Ulissi, Zachary W. .
ACS CATALYSIS, 2019, 9 (09) :7651-7659
[6]  
Balandin A.A., 1969, Advances in Catalysis, V19, P1, DOI DOI 10.1016/S0360-0564(08)60029-2
[7]   High-Entropy Alloys as a Discovery Platform for Electrocatalysis [J].
Batchelor, Thomas A. A. ;
Pedersen, Jack K. ;
Winther, Simon H. ;
Castelli, Ivano E. ;
Jacobsen, Karsten W. ;
Rossmeisl, Jan .
JOULE, 2019, 3 (03) :834-845
[8]   Constructing high-dimensional neural network potentials: A tutorial review [J].
Behler, Joerg .
INTERNATIONAL JOURNAL OF QUANTUM CHEMISTRY, 2015, 115 (16) :1032-1050
[9]  
Bjerrum E.J., 2017, CORR
[10]   Memory-assisted reinforcement learning for diverse molecular de novo design [J].
Blaschke, Thomas ;
Engkvist, Ola ;
Bajorath, Juergen ;
Chen, Hongming .
JOURNAL OF CHEMINFORMATICS, 2020, 12 (01)